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Interaction Lecture 11 CPSC 533C, Fall 2004 25 Oct 2004 Tamara Munzner.

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Presentation on theme: "Interaction Lecture 11 CPSC 533C, Fall 2004 25 Oct 2004 Tamara Munzner."— Presentation transcript:

1 Interaction Lecture 11 CPSC 533C, Fall 2004 25 Oct 2004 Tamara Munzner

2 Ware: Interacting with Visualizations Ware: Thinking with Visualizations Cognitive Co-Processor SDM Dynamic Queries more linked views –Exploratory Data Views –Influence Explorer

3 Ware Interaction control loops –Fitts’ Law time to select depends on distance, target size –two-handed interaction coarse vs. fine control: paper vs. pen hold learning –power law of practice vigilance –difficult, erodes with fatigue

4 Ware Interaction 2 navigation –next time rapid zooming –next time distortion –next week multiple windows, linked highlighting –today! dynamic queries –today!

5 Ware Thinking with Viz problem solving loops –external representations visual working memory –low capacity –visual attention –gist: 100ms –change blindness “world is its own memory”

6 Memory and Loops long term memory –chunking –memory palaces (method of loci) loops –problem-solving strategy –visual query construction –pattern-finding loop –eye movement control loop –intrasaccadic image-scanning loop

7 InfoVis Implications visual query patterns navigation cost multiple windows vs. zoom

8 Cognitive Co-Processor animated transitions –object constancy –fixed frame rate required architectural solution –split work into small chunks –animation vs. idle states –governor controls frame rate [video: 3D rooms]

9 SDM sophisticated selection, highlighting, object manipulation [video]

10 Dynamic Queries: HomeFinder filter with immediate visual feedback “starfield”: scatterplot [video]

11 DQ 2: FilmFinder

12

13 More Linked Views key infovis interaction principle so far: Ware, Trellis, cluster calendar, snap-together, …. brushing: linked highlighting Becker and Cleveland, “Brushing Scatterplots”, Technometrics 29, 127-142 new examples: EDV Attribute Explorer

14 EDV Exploratory Data Visualizer Graham J. Wills. Visual Exploration of Large Structured Datasets. In New Techniques and Trends in Statistics, 237-246. IOS Press, 1995.Visual Exploration of Large Structured Datasets.

15 Highlighting (Focusing) Focus user attention on a subset of the data within one graph (from Wills 95) [www.sims.berkeley.edu/courses/is247/s02/lectures/Lecture3.ppt]

16 Link different types of graphs: Scatterplots and histograms and bars (from Wills 95) [www.sims.berkeley.edu/courses/is247/s02/lectures/Lecture3.ppt]

17 Baseball data: Scatterplots and histograms and bars (from Wills 95) select high salaries avg career HRs vs avg career hits (batting ability) avg assists vs avg putouts (fielding ability) how long in majors distribution of positions played [www.sims.berkeley.edu/courses/is247/s02/lectures/Lecture3.ppt]

18 Linking types of assist behavior to position played (from Wills 95) [www.sims.berkeley.edu/courses/is247/s02/lectures/Lecture3.ppt]

19 Influence/Attribute Explorer Visualization for Functional Design, Bob Spense, Lisa Tweedie, Huw Dawkes, Hua Su, InfoVis 95 [video]


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